跳到内容ScholarGate
文库我的文库桌面Review Studio助手
登录
Multi-Touch Media Attribution/证据
方法证据记录

Multi-Touch Media Attribution

Multi-touch media attribution distributes credit for a conversion across the sequence of marketing touchpoints a customer encountered, replacing crude heuristics like 'last click gets everything' with models that respect the whole journey. Two principled approaches dominate: graph-based Markov-chain models, advanced by Eva Anderl and colleagues, which represent customer paths as transitions between channels and value a channel by its 'removal effect' on the probability of conversion; and Shapley-value attribution, analyzed by Ron Berman, which treats channels as players in a cooperative game and assigns each its average marginal contribution across all possible coalitions. Both reject single-touch rules because those rules systematically misvalue channels — Berman shows that last-touch over-incentivizes the final exposure and can lower advertiser profit, while Anderl et al. demonstrate that Markov models recover credit allocations markedly different from simple heuristics. The result is a defensible, data-driven map of which channels actually move customers toward conversion, used to reallocate budget and compute channel-level return on ad spend. Because attribution is fundamentally about the incremental effect of exposures, it sits at the boundary of measurement and causal inference.

Sources recorded, not reviewed

源记录

引文逐字复制自方法源记录。这些引文不代表任何层级的验证。

Multi-Touch Media Attribution (Markov-Chain and Shapley-Value Models)
分类方法记录 · ml-model / marketing-science
  • Anderl, E., Becker, I., von Wangenheim, F., & Schumann, J. H. (2016). Mapping the customer journey: Lessons learned from graph-based online attribution modeling. International Journal of Research in Marketing, 33(3), 457-474. · DOI 10.1016/j.ijresmar.2016.03.001
  • Berman, R. (2018). Beyond the Last Touch: Attribution in Online Advertising. Marketing Science, 37(5), 771-792. · DOI 10.1287/mksc.2018.1104
打开完整方法

精选声明

声明已持久化到证据分类账中,每个声明都有自己的评估。

尚无精选声明

当分类账中没有声明时,此视图不会自行创建声明评估。

相关方法

从方法图中生成,显示为机器建议的关系 — 不推断任何证据声明。

See alsoCustomer Journey Analysismachine-suggested · Relational suggestion, not evidence.Used in the same domainOnline Controlled Experimentmachine-suggested · Relational suggestion, not evidence.Same method familyUplift Modelingmachine-suggested · Relational suggestion, not evidence.

证据状态

Sources recorded, not reviewed

Bibliographic sources are present. Claim-level evidence review has not been performed.

来源

从方法源记录复制的 2 条记录的引文。

操作

打开方法页面
ScholarGate

以内容为本的研究方法参考文库——每种方法是什么、如何运作、源自何处。

开放数据(CC-BY)

探索

  • 文库
  • 搜索方法…
  • 按领域浏览
  • 学科领域
  • 历程
  • 对比
  • 该用哪种方法?

参考

  • 学科
  • 图集
  • 术语表
  • 方法论
  • 哲学

工作区

  • 我的文库
  • 桌面
  • 聊天

公司

  • 关于
  • 价格
  • 联系我们
  • 建议新方法

本词条系根据已发表文献整理,仅供参考。核实任何信息的准确性及其是否适用于您的具体用途,仍由您自行负责。

© 2026 ScholarGate · 研究方法参考文库
  • 隐私
  • Cookie
  • 条款
  • 删除账户